Publication | Open Access
WRF–ML v1.0: a bridge between WRF v4.3 and machine learning parameterizations and its application to atmospheric radiative transfer
30
Citations
24
References
2023
Year
EngineeringMachine LearningComputational ModelWeather ForecastingMl ModelsAtmospheric ModelWrf–ml V1.0Physical Parameterization SchemesNumerical Weather PredictionRadiative TransferData SciencePhysic Aware Machine LearningAtmospheric ScienceNumerical SimulationModeling And SimulationAtmospheric ModelingMeteorologyComputer EngineeringComputer ScienceForecastingMachine Learning ParameterizationsRadiative Transfer ModellingSubgrid Models
Abstract. In numerical weather prediction (NWP) models, physical parameterization schemes are the most computationally expensive components, despite being greatly simplified. In the past few years, an increasing number of studies have demonstrated that machine learning (ML) parameterizations of subgrid physics have the potential to accelerate and even outperform conventional physics-based schemes. However, as the ML models are commonly implemented using the ML libraries written in Python, very few ML-based parameterizations have been successfully integrated with NWP models due to the difficulty of embedding Python functions into Fortran-based NWP models. To address this issue, we developed a coupler to allow the ML-based parameterizations to be coupled with a widely used NWP model, i.e., the Weather Research and Forecasting (WRF) model. Similar to the WRF I/O methodologies, the coupler provides the options to run the ML model inference with exclusive processors or the same processors for WRF calculations. In addition, to demonstrate the effectiveness of the coupler, the ML-based radiation emulators are trained and coupled with the WRF model successfully.
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